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Predicting Outcome for Collaborative Featured Article Nomination in Wikipedia

机译:预测维基百科合作特色文章提名的结果

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In Wikipedia, good articles are wanted. While Wikipedia relies on collaborative effort from online volunteers for quality checking, the process of selecting top quality articles is time consuming. At present, the duty of decision making is shouldered by only a couple of administrators. Aiming to assist in the quality checking cycles so as to cope with the exponential growth of online contributions to Wikipedia, this work studies the task of predicting the outcome of featured article (FA) nominations. We analyze FA candidate (FAC) sessions collected over a period of 3.5 years, and examine the extent to which consensus has been practised in this process. We explore the use of interaction features between FAC reviewers to learn SVM classifiers to predict the nomination outcome. We find that, calibrating the individual user's polarity of opinions as features improves the prediction accuracy significantly.
机译:在维基百科,需要好的文章。虽然维基百科依赖于在线志愿者进行质量检查的合作努力,但选择顶级品质文章的过程是耗时的。目前,决策的责任只能受到几个管理员的责任。旨在协助质量检查周期,以应对维基百科的在线贡献的指数增长,这项工作研究了预测特色文章的结果(FA)提名的任务。我们分析了33岁以上收集的FA候选人(FAC)会议,并审查该过程中实施共识的程度。我们探索在FAS审阅者之间的交互功能使用来学习SVM分类器来预测提名结果。我们发现,随着特征显着提高预测准确性,校准个人用户的极性。

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